Smart City Gnosys

Smart city article details

Title From Efficiency To Equity: A Multi-User Paradigm In Mobile Route Optimization
ID_Doc 27188
Authors Guo P.; Xiao K.
Year 2024
Published Electronic Commerce Research and Applications, 68
DOI http://dx.doi.org/10.1016/j.elerap.2024.101459
Abstract This study addresses the challenge of optimizing vehicle mobility in urban environments, which is significant for the advancement of smart city initiatives and spatial data analysis. We introduce a novel mobile recommendation system designed for multi-user scenarios, aiming to achieve a balance between effectiveness and fairness. The system prioritizes maximizing the profitability of vehicle service providers while ensuring an equitable distribution of recommended routes among users. Our approach features a redefined objective function that integrates a fairness criterion alongside path quality optimization. We further propose PSA-DLMA (Parallel Simulated Annealing with Deep Learning-Guided Move Adaptation), a stochastic path search method that leverages deep learning to guide move and strategy selection, alongside a dynamic termination mechanism and a parallel processing strategy. We validate our methodology using recent yellow taxi data from New York City and its surroundings, conducting comprehensive experiments to assess the performance of the system. The results demonstrate the superiority of PSA-DLMA over existing state-of-the-art solutions, offering significant contributions to improving urban vehicle mobility within the smart city framework. © 2024
Author Keywords Fairness; Parallel computing; Route optimization


Similar Articles


Id Similarity Authors Title Published
50444 View0.866Xiao M.; Chen L.; Feng H.; Peng Z.; Long Q.Smart City Public Transportation Route Planning Based On Multi-Objective Optimization: A ReviewArchives of Computational Methods in Engineering, 31, 6 (2024)
32662 View0.86Chen G.; Zhang J.W.Intelligent Transportation Systems: Machine Learning Approaches For Urban Mobility In Smart CitiesSustainable Cities and Society, 107 (2024)
10555 View0.859Shulajkovska M.; Smerkol M.; Noveski G.; Bohanec M.; Gams M.Artificial Intelligence-Based Decision Support System For Sustainable Urban MobilityElectronics (Switzerland), 13, 18 (2024)
59071 View0.855Javaherian M.Trust In Smart City Mobility Applications: A Multi-Agent System PerspectiveU.Porto Journal of Engineering, 11, 1 (2025)
8772 View0.854Chen R.; Song W.; Zu W.; Dong Z.; Guo Z.; Sun F.; Tian Z.; Wang J.An Llm-Driven Framework For Multiple-Vehicle Dispatching And Navigation In Smart City LandscapesProceedings - IEEE International Conference on Robotics and Automation (2024)
58246 View0.854Abdelmoumene H.; Boussahoul S.Towards Optimized Dynamic Ridesharing System Through Multi-Objective Reinforcement Learning2024 IEEE International Multi-Conference on Smart Systems and Green Process, IMC-SSGP 2024 (2024)
31170 View0.853Wan X.; Ghazzai H.; Massoud Y.Incremental Recommendation System For Large-Scale Taxi Fleet In Smart Cities2019 IEEE International Conference on Vehicular Electronics and Safety, ICVES 2019 (2019)
51664 View0.852Mahrez Z.; Sabir E.; Badidi E.; Saad W.; Sadik M.Smart Urban Mobility: When Mobility Systems Meet Smart DataIEEE Transactions on Intelligent Transportation Systems, 23, 7 (2022)
2484 View0.851Chaimae E.A.; Najima D.; Manar A.; Btihal E.G.; Imane H.; Meriem H.A Machine Learning-Based Recommendation System For Smart Mobility Trip Planning In MoroccoAdvances in Emerging Financial Technology and Digital Money (2024)